随机反褶积方法在复杂BCI多端口热RC网络识别中的应用

V. Bissuel, E. Monier-Vinard, Quentin Dupuis, O. Daniel, N. Laraqi, J. Bauzin
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引用次数: 2

摘要

电子元件的热建模对于防止元件温度超过其工作极限时的老化现象变得越来越重要。在板级上,使用多端口RC网络作为热模型来分析它们之间的热相互作用。这些紧凑模型通常是从组件的完整物理表示及其在一组边界条件下的热行为中提取出来的。不幸的是,这种对设备的精确描述需要一组关于包装的信息,而这些信息通常是不可用的。为了完成缺失的热性能,结-壳行为的瞬态测量被证明是非常有用的。利用阶跃函数响应,利用贝叶斯等迭代方法对RC热模型进行了一组反卷积网络辨识。作为主要结果,提出了一种实用的程序,可以直接从福斯特阶梯形式的极低阶段RC热模型的离散时间常数谱中提取。推导的RC模型与实验数据吻合较好。比较是在安装在测试车辆上的一组设备上完成的。在此基础上,对各设备的详细数值模型进行了网络辨识,以备标定之用。单向响应的校准程序允许修复模型差异,目的是创建相关的边界条件无关的多路径RC网络。
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Application of Stochastic Deconvolution Methods to improve the Identification of Complex BCI Multi-port Thermal RC Networks
The thermal modeling of electronic components is more and more crucial to prevent ageing phenomena when the component temperatures exceed their operating limits.At board level, the analysis of their mutual thermal interactions is done using multi-port RC networks as thermal models. Those compact models are usually extracted from a full physical representation of the component and its thermal behavior for a set of boundary conditions. Unfortunately, that fine description of the device requires a set of information about the package that is often not available.To complete the missing thermal properties, transient measurements of the junction-to-case behavior proved to be very useful. Using step function responses, a set of network identification by deconvolution of RC thermal model was conducted using iterative methods such as Bayesian ones.As a main result, a practical procedure is proposed that allows a direct extraction from discrete time constant spectrum of a very low-stage RC thermal model in the form of Foster ladder. The derived RC model demonstrates a high agreement with experimental data. The comparison is done on a set of devices mounted on a test vehicle.Further, the network identification procedure is conducted on the detailed numerical model of each device for calibration prospect. That calibration procedure of unidirectional responses permits to fix model discrepancies with the aim of creating relevant Boundary-Condition-Independent multipath RC networks.
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